Decision-Making Performance in Big Data Era: The Role of Actual Business Intelligence Systems Use and Affecting External Constraints

Business Intelligence (BI) has received wide recognition in the business world as a tool to address ‘big’ data-related problems, to help managers understand their businesses and to assist them in making effective decisions. To date, however, there have been few studies which have clearly articulated a theoretically grounded model that explains how the use of BI systems provides benefits to organisations, or explains what factors influence the actual use of BI systems. To fully achieve greater decision-making performance and effective use of BI, we contend that BI systems integration with a systems user’s work routine (dependence on the systems) is essential. Following this argument, we examine the effects of system dependent use along with effective use (infusion) on individual’s decision-making performance with BI. Additionally, we pro-pose that a fact-based decision-making culture, and data quality of source systems are constraints factors that impact on BI system dependence and infusion. We adopt a quantitative method approach. Specifically, we will conduct a two-wave cross-sectional survey targeting 400 North American BI users who describe themselves as both using a BI system and making decision using data from the system. We expect to make an important theoretical contribution to BI literature by providing a model that explains the dimensions of actual BI system use, and makes a practical contribution by providing insights into how organisational external constraints facilitate BI dependence and infusion in the pursuit of BI-enabled performance gain.

[1]  L. Allison Jones-Farmer,et al.  Why you should consider SEM: A guide to getting started , 2006 .

[2]  J. Pfeffer,et al.  Evidence-based management. , 2006, Harvard business review.

[3]  Van-Hau Trieu,et al.  Getting value from Business Intelligence systems: A review and research agenda , 2017, Decis. Support Syst..

[4]  Hugh J. Watson,et al.  Tutorial: Big Data Analytics: Concepts, Technologies, and Applications , 2014, Commun. Assoc. Inf. Syst..

[5]  Gordon B. Davis,et al.  Can Humans Detect Errors in Data? Impact of Base Rates, Incentives, and Goals , 1997, MIS Q..

[6]  Dorothy E. Leidner,et al.  Review: A Review of Culture in Information Systems Research: Toward a Theory of Information Technology Culture Conflict , 2006, MIS Q..

[7]  Thomas D. Clark,et al.  The Dynamic Structure of Management Support Systems: Theory Development, Research Focus, and Direction , 2007, MIS Q..

[8]  Hugh J. Watson,et al.  Tutorial: Business Intelligence - Past, Present, and Future , 2009, Communications of the Association for Information Systems.

[9]  Fred D. Davis,et al.  A Theoretical Extension of the Technology Acceptance Model: Four Longitudinal Field Studies , 2000, Management Science.

[10]  Andrew Burton-Jones,et al.  From Use to Effective Use: A Representation Theory Perspective , 2013, Inf. Syst. Res..

[11]  Guido Schryen,et al.  Revisiting IS business value research: what we already know, what we still need to know, and how we can get there , 2013, Eur. J. Inf. Syst..

[12]  Karlheinz Kautz,et al.  Towards an Understanding of Business Intelligence , 2010 .

[13]  Lei Chi,et al.  Understanding Postadoptive Behaviors in Information Systems Use: A Longitudinal Analysis of System Use Problems in the Business Intelligence Context , 2012, J. Manag. Inf. Syst..

[14]  Ephraim R. McLean,et al.  The DeLone and McLean Model of Information Systems Success: A Ten-Year Update , 2003, J. Manag. Inf. Syst..

[15]  Peter B. Seddon A Respecification and Extension of the DeLone and McLean Model of IS Success , 1997, Inf. Syst. Res..

[16]  I. Yeoman Competing on analytics: The new science of winning , 2009 .

[17]  Graeme Shanks,et al.  Creating value from business analytics systems: a process-oriented theoretical framework and case study , 2011 .

[18]  Peter Trkman,et al.  The impact of business analytics on supply chain performance , 2010, Decis. Support Syst..

[19]  Fred D. Davis,et al.  Extension of the Technology Acceptance Model: Four Longitudinal Field : . , 2000 .

[20]  Daniel L. Sherrell,et al.  Communications of the Association for Information Systems , 1999 .

[21]  Dale Goodhue,et al.  Task-Technology Fit and Individual Performance , 1995, MIS Q..

[22]  Veda C. Storey,et al.  Call for Papers MISQ Special Issue on , 2010 .

[23]  Kenneth L. Kraemer,et al.  Executives’ Perceptions of the Business Value of Information Technology: A Process-Oriented Approach , 2000, J. Manag. Inf. Syst..

[24]  Chiara Francalanci,et al.  IS integration and business performance: The mediation effect of organizational absorptive capacity in SMEs , 2008, J. Inf. Technol..

[25]  Wynne W. Chin,et al.  Technology use on the front line: how information technology enhances individual performance , 2007 .

[26]  A. Gunasekaran,et al.  Managing the Implementation of Business Intelligence Systems: A Critical Success Factors Framework , 2010 .

[27]  Hugh J. Watson,et al.  Preparing for the Cognitive Generation of Decision Support , 2017, MIS Q. Executive.

[28]  Sean B. Maynard,et al.  Towards a business analytics capability maturity model , 2012 .

[29]  Peter B. Seddon,et al.  How Does Business Analytics Contribute to Business Value? , 2012, ICIS.

[30]  Farimah HakemZadeh,et al.  Toward a theory of evidence based decision making , 2012 .

[31]  N. Bekmamedova,et al.  The impact of strategy on business analytics success , 2012 .

[32]  T. Davenport Competing on analytics. , 2006, Harvard business review.

[33]  Jeretta Horn Nord,et al.  An Investigation of the Impact of Organization Size on Data Quality Issues , 2005, J. Database Manag..

[34]  Gordon B. Davis,et al.  User Acceptance of Information Technology: Toward a Unified View , 2003, MIS Q..

[35]  D. Arnott,et al.  Evaluating the intangible benefits of Business Intelligence: review and research agenda , 2004 .

[36]  Anna Sidorova,et al.  Business intelligence success: The roles of BI capabilities and decision environments , 2013, Inf. Manag..

[37]  Vasant Dhar,et al.  Editorial - Big Data, Data Science, and Analytics: The Opportunity and Challenge for IS Research , 2014, Inf. Syst. Res..

[38]  Robert W. Zmud,et al.  Advanced Business Intelligence at Cardinal Health , 2005, MIS Q. Executive.

[39]  Michael J. Gallivan,et al.  ORGANIZATIONS: A MULTILEVEL PERSPECTIVE , 2007 .

[40]  Jayanthi Ranjan Business justification with business intelligence , 2008 .

[41]  Anna Sidorova,et al.  Factors influencing business intelligence (BI) data collection strategies: An empirical investigation , 2012, Decis. Support Syst..

[42]  Irma Becerra-Fernandez,et al.  Business Intelligence: Practices, Technologies, and Management , 2013 .